Flawless Detection of Herbal Plant Leaf by Machine Learning Classifier Through Two Stage Authentication Procedure

J SamuelManoharan
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引用次数: 11

Abstract

Herbal plants are crucial to human existence for medical reasons, and they can also provide free oxygen to the environment. Many herbal plants are rich in therapeutic goods and also it includes the active elements that will benefit future generations. Many valuable plant species are being extinguished and destroyed as a result of factors such as global warming, population growth, occupational secrecy, a lack of government support for research, and a lack of knowledge about therapeutic plants. Due to the lag of dimensional factors such as length and width, many existing algorithms fail to recognize herbal leaf in all seasons with the maximum accuracy. Henceforth, the proposed algorithm focuses on the incomplete problems in the datasets in order to improve the detection rate for herbal leaf identification. The inclusions of dimension factors in the datasets are performing good results in the image segmentation process. The obtained result has been validated with a machine learning classifier when combined with ex-or gate operation is called deep knowledge-based identification. This two-stage authentication (TSA) procedure is improving the recognition rate required for the detection of herbal leaf. This fusion of image segmentation with machine learning is providing good robustness for the proposed architecture. Besides, intelligent selection of image segmentation techniques to segment the leaf from the image is improving the detection accuracy. This procedure is addressing and answering the drawbacks associated with the detection of the herbal leaf by using many Machine Learning (ML) approaches. Also, it improves the rate of detection and minimizes the classification error. From the results, it is evident that the proposed method has obtained better accuracy and other performance measures.
通过两阶段认证程序的机器学习分类器对草药植物叶片的完美检测
由于医学原因,草本植物对人类的生存至关重要,它们还可以为环境提供自由氧气。许多草本植物都有丰富的治疗物品,而且它还包括有益于子孙后代的活性元素。由于全球变暖、人口增长、职业保密、缺乏政府对研究的支持以及缺乏对治疗植物的知识等因素,许多有价值的植物物种正在灭绝和毁灭。由于长度和宽度等维度因素的滞后,现有的许多算法无法以最大的精度识别一年四季的草本叶片。今后,本文提出的算法将重点关注数据集中的不完整问题,以提高草药叶片识别的检出率。数据集中包含的维度因子在图像分割过程中取得了很好的效果。用机器学习分类器对所得结果进行验证,并结合出门或出门操作进行深度知识识别。这种两阶段认证(TSA)程序提高了草药叶检测所需的识别率。这种图像分割与机器学习的融合为所提出的体系结构提供了良好的鲁棒性。此外,智能选择图像分割技术将叶子从图像中分割出来,提高了检测精度。这个过程通过使用许多机器学习(ML)方法来解决和回答与草药叶检测相关的缺点。此外,它还提高了检测率,最大限度地减少了分类错误。结果表明,该方法取得了较好的精度和其他性能指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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